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Collaborative Spectrum Sensing from Sparse Observations in Cognitive Radio Networks

机译:认知无线电网络中稀疏观测的协作频谱感知

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Spectrum sensing, which aims at detecting spectrum holes, is the precondition for the implementation of cognitive radio (CR). Collaborative spectrum sensing among the cognitive radio nodes is expected to improve the ability of checking complete spectrum usage. Due to hardware limitations, each cognitive radio node can only sense a relatively narrow band of radio spectrum. Consequently, the available channel sensing information is far from being sufficient for precisely recognizing the wide range of unoccupied channels. Aiming at breaking this bottleneck, we propose to apply matrix completion and joint sparsity recovery to reduce sensing and transmission requirements and improve sensing results. Specifically, equipped with a frequency selective filter, each cognitive radio node senses linear combinations of multiple channel information and reports them to the fusion center, where occupied channels are then decoded from the reports by using novel matrix completion and joint sparsity recovery algorithms. As a result, the number of reports sent from the CRs to the fusion center is significantly reduced. We propose two decoding approaches, one based on matrix completion and the other based on joint sparsity recovery, both of which allow exact recovery from incomplete reports. The numerical results validate the effectiveness and robustness of our approaches. In particular, in small-scale networks, the matrix completion approach achieves exact channel detection with a number of samples no more than 50% of the number of channels in the network, while joint sparsity recovery achieves similar performance in large-scale networks.
机译:旨在检测频谱空洞的频谱感测是实现认知无线电(CR)的前提。认知无线电节点之间的协作频谱感知有望提高检查完整频谱使用情况的能力。由于硬件限制,每个认知无线电节点只能感知相对较窄的无线电频谱。因此,可用的信道感测信息远远不足以精确地识别大范围的空闲信道。为了克服这一瓶颈,我们建议应用矩阵完成和联合稀疏性恢复,以减少感测和传输需求并改善感测结果。具体而言,每个认知无线电节点都配备了频率选择滤波器,可感知多个信道信息的线性组合,并将其报告给融合中心,然后在融合中心使用新颖的矩阵完成和联合稀疏性恢复算法从报告中解码占用的信道。结果,从CR发送到融合中心的报告数量大大减少了。我们提出了两种解码方法,一种基于矩阵完成,另一种基于联合稀疏恢复,这两种解码方法都可以从不完整的报告中进行精确恢复。数值结果验证了我们方法的有效性和鲁棒性。尤其是在小型网络中,矩阵完成方法使用不超过网络中信道数量的50%的样本数量即可实现精确的信道检测,而联合稀疏性恢复在大型网络中可获得类似的性能。

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